联合滤波的空间变线性表示模型

Jin-shan Pan, Jiangxin Dong, Jimmy S. J. Ren, Liang Lin, Jinhui Tang, Ming-Hsuan Yang
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引用次数: 30

摘要

联合滤波主要是利用附加的制导图像作为先验,在滤波过程中将其结构转移到目标图像上。与现有算法依赖局部线性模型或手工设计的目标函数从制导图像中提取结构信息不同,我们提出了一种基于空间变线性表示模型(SVLRM)的联合滤波器,其中目标图像由制导图像线性表示。然而,SVLRM导致了一个高度不适定的问题。为了估计线性表示系数,我们开发了一种基于深度卷积神经网络(CNN)的有效算法。所提出的深度CNN(受SVLRM约束)能够估计空间变化的线性表示系数,该系数能够对制导图像和输入图像的结构信息进行建模。我们的研究表明,该算法可以有效地应用于各种应用,包括深度/RGB图像的上采样和恢复,闪光/无闪光图像去模糊,自然图像去噪,尺度感知滤波等。大量的实验结果表明,所提出的算法优于为每个任务专门设计的最先进的方法。
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Spatially Variant Linear Representation Models for Joint Filtering
Joint filtering mainly uses an additional guidance image as a prior and transfers its structures to the target image in the filtering process. Different from existing algorithms that rely on locally linear models or hand-designed objective functions to extract the structural information from the guidance image, we propose a new joint filter based on a spatially variant linear representation model (SVLRM), where the target image is linearly represented by the guidance image. However, the SVLRM leads to a highly ill-posed problem. To estimate the linear representation coefficients, we develop an effective algorithm based on a deep convolutional neural network (CNN). The proposed deep CNN (constrained by the SVLRM) is able to estimate the spatially variant linear representation coefficients which are able to model the structural information of both the guidance and input images. We show that the proposed algorithm can be effectively applied to a variety of applications, including depth/RGB image upsampling and restoration, flash/no-flash image deblurring, natural image denoising, scale-aware filtering, etc. Extensive experimental results demonstrate that the proposed algorithm performs favorably against state-of-the-art methods that have been specially designed for each task.
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